Insights into Imaging (Sep 2024)

A practical risk stratification system based on ultrasonography and clinical characteristics for predicting the malignancy of soft tissue masses

  • Ying-Lun Zhang,
  • Meng-Jie Wu,
  • Yu Hu,
  • Xiao-Jing Peng,
  • Qian Ma,
  • Cui-Lian Mao,
  • Ye Dong,
  • Zong-Kai Wei,
  • Ying-Qian Gao,
  • Qi-Yu Yao,
  • Jing Yao,
  • Xin-Hua Ye,
  • Ju-Ming Li,
  • Ao Li

DOI
https://doi.org/10.1186/s13244-024-01802-9
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 10

Abstract

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Abstract Objective To establish a practical risk stratification system (RSS) based on ultrasonography (US) and clinical characteristics for predicting soft tissue masses (STMs) malignancy. Methods This retrospective multicenter study included patients with STMs who underwent US and pathological examinations between April 2018 and April 2023. Chi-square tests and multivariable logistic regression analyses were performed to assess the association of US and clinical characteristics with the malignancy of STMs in the training set. The RSS was constructed based on the scores of risk factors and validated externally. Results The training and validation sets included 1027 STMs (mean age, 50.90 ± 16.64, 442 benign and 585 malignant) and 120 STMs (mean age, 51.93 ± 17.90, 69 benign and 51 malignant), respectively. The RSS was constructed based on three clinical characteristics (age, duration, and history of malignancy) and six US characteristics (size, shape, margin, echogenicity, bone invasion, and vascularity). STMs were assigned to six categories in the RSS, including no abnormal findings, benign, probably benign (fitted probabilities [FP] for malignancy: 0.001–0.008), low suspicion (FP: 0.008–0.365), moderate suspicion (FP: 0.189–0.911), and high suspicion (FP: 0.798–0.999) for malignancy. The RSS displayed good diagnostic performance in the training and validation sets with area under the receiver operating characteristic curve (AUC) values of 0.883 and 0.849, respectively. Conclusion The practical RSS based on US and clinical characteristics could be useful for predicting STM malignancy, thereby providing the benefit of timely treatment strategy management to STM patients. Critical relevance statement With the help of the RSS, better communication between radiologists and clinicians can be realized, thus facilitating tumor management. Key Points There is no recognized grading system for STM management. A stratification system based on US and clinical features was built. The system realized great communication between radiologists and clinicians in tumor management. Graphical Abstract

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